论文标题

强大的无监督时间序列异常检测的损耗压缩

Lossy Compression for Robust Unsupervised Time-Series Anomaly Detection

论文作者

Ley, Christopher P., Silva, Jorge F.

论文摘要

在这项工作中提出了一种新的有损因果关系卷积神经网络自动编码器,用于异常检测。我们的框架使用费率损失和熵瓶颈来学习任务的压缩潜在表示。使用费用损失的主要思想是引入表示灵活性,该灵活性忽略或变得强大,以实现独特的模式,例如异常。这些异常表现为在测试条件中可以准确检测到的独特失真特征。这种新的架构使我们能够训练一个完全无监督的模型,该模型在检测失真分数的异常方面具有很高的精度,尽管接受了一部分未标记的异常数据的训练。与许多要求模型仅在“正常数据”上训练的最新无监督方法相比,此设置与许多最新的无监督方法形成鲜明对比。我们认为,这部分违反了无监督培训对异常检测的概念,因为该模型使用了一个明智的决定,该决定从异常中选择正常的培训。此外,有证据表明它也会影响模型的泛化能力。我们证明,在将异常数据注入训练中时,仅根据正常数据对范式进行训练的模型无法稳健。相反,我们的基于压缩的方法会收敛到可耐受某些异常失真的强大表示。使用速率损失的模型实现的强大表示形式可以用于更现实的无监督异常检测方案中。

A new Lossy Causal Temporal Convolutional Neural Network Autoencoder for anomaly detection is proposed in this work. Our framework uses a rate-distortion loss and an entropy bottleneck to learn a compressed latent representation for the task. The main idea of using a rate-distortion loss is to introduce representation flexibility that ignores or becomes robust to unlikely events with distinctive patterns, such as anomalies. These anomalies manifest as unique distortion features that can be accurately detected in testing conditions. This new architecture allows us to train a fully unsupervised model that has high accuracy in detecting anomalies from a distortion score despite being trained with some portion of unlabelled anomalous data. This setting is in stark contrast to many of the state-of-the-art unsupervised methodologies that require the model to be only trained on "normal data". We argue that this partially violates the concept of unsupervised training for anomaly detection as the model uses an informed decision that selects what is normal from abnormal for training. Additionally, there is evidence to suggest it also effects the models ability at generalisation. We demonstrate that models that succeed in the paradigm where they are only trained on normal data fail to be robust when anomalous data is injected into the training. In contrast, our compression-based approach converges to a robust representation that tolerates some anomalous distortion. The robust representation achieved by a model using a rate-distortion loss can be used in a more realistic unsupervised anomaly detection scheme.

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